About Course

This course teaches data-specific computational analyses and integrative analysis approaches across omics datasets, including transcriptomics, proteomics, metabolomics, single-cell RNA sequencing, spatial transcriptomics, and machine learning approaches for multi-omics integration.

Course abbreviation: MODS

Instructor: Dr. Fadhl Alakwaa and Dr. Mohamed Hamed

Group leader, Rostock University, Germany; Bioinformatician and Researcher, Department of Medicine, Stanford University, USA.

Workload: 12 lectures, 3 hours each. Total workload: 48 hours: 36 hours of lectures and tutorials and 12 hours of self studies.

Entrance requirements: Basic knowledge of biology and Bioinformatics I.

Used media: PowerPoint presentation

Objectives

  • Understand different omics data types and functional genomics applications
  • Perform data-specific computational analyses for high-throughput biological data
  • Analyze omics data using R and Bioconductor packages
  • Develop and apply integrative bioinformatics methods
  • Use machine learning concepts to integrate biological features from heterogeneous omics data

Competences to be Developed

  • Data-specific computational analysis pipelines
  • R language and Bioconductor for omics analysis
  • Integrative bioinformatics methods
  • Machine learning basics for heterogeneous omics integration
  • Research project interpretation, manuscript writing, and scientific discussion

Assessment

  • Finalize a research project applying learned methods
  • Compile outcomes as a high-quality scientific article
  • Present, discuss, and review projects in the last lecture
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What Will You Learn?

  • Understand different omics data types and functional genomics applications
  • Perform data-specific computational analyses for high-throughput biological data
  • Analyze omics data using R and Bioconductor packages
  • Develop and apply integrative bioinformatics methods
  • Data-specific computational analysis pipelines
  • R language and Bioconductor for omics analysis
  • Integrative bioinformatics methods
  • Machine learning basics for heterogeneous omics integration

Course Content

Lecture 1: Course Introduction

  • Course Introduction
    00:00

Lecture 2: R Revision I

Lecture 3: Transcriptomics I (Microarrays)

Lecture 4: Transcriptomics II (Bulk RNA-Seq)

Lecture 5: Transcriptomics III – Non-coding RNAs

Lecture 6: Gene-set Analysis and Data Integration

Lecture 7: Proteomics

Lecture 8: Metabolomics

Lecture 9: Single-cell RNA Sequencing I

Lecture 10: Single-cell RNA Sequencing II

Lecture 11: Single-cell RNA Sequencing III

Lecture 12: Spatial Transcriptomics / Project Discussion

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